π What kind of MLOps team are you? [Part 3/3]
#mlops #productionml #dataops #mlsystems
In early starts-ups & even at the Small/Med Size business, teams are often a combination of the different modes & that's totally fine!
You don't always need a specialized team!
π‘What's important to recognize is to know this framework exists for organziational alignment, as well as to know when teams can be spun out.
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π What kind of MLOps team are you? [Part2/3]
#mlops #productionml #dataops #mlsystems
π Zeroing in on the ones that oftentimes constitute the ML Org or the Data org:
β Enabling teams - Help the DS & Product folks get those models out the door using the internal plateforms & capabilities provided by the CST
βοΈ Complicated Subsystem team - Focused on maintaining & expanding the extremely technical solution they own
π·π»ββοΈThe Platform Team - Owns unified & integrated experience.
#MLops #productionml #dataops #mlsystems
π What kind of MLOps team are you? [Part1/3]
πΊοΈ In the world of "team Topologies" there are 4 types of teams.
π Stream-aligned teams (ST) ---------> Data science & Product (for example)
β Enabling teams (ET) ---------> ML Engineering
βοΈ Complicated Subsystem team (CST) ---------> The Kubernetes Team, the GCP team, the Terraform team, the Redis team, etc
π·π»ββοΈThe Platform Team (PT) ---------> The ML Platform Team, The Data Platform Team, etc
#MLops #productionml #dataops #mlsystems
ππ» Online Inference =/= Streaming
We're all aware of this right? That they're not the same thing?
#mlops #mlengineering #datascience #dataengineering #productionml #mlsystems #systemdesign
#MLops #mlengineering #datascience #dataengineering #productionml #mlsystems #systemdesign
So don't let the shift in topic to Data-Centric AI fool you into thinking modeling, algorithms, feature engineering, etc aren't important.
Instead see the focus of convo on data as an acknowledgement of an impactful area that has been underappreciated in its impact on ML.
#MLops #dataengineering #productionml #mlsystems
If you talk to most serious athletes or bodybuilders, they'll tell you how important diet is in achieving their goals. (Hint: The phrase "Abs are made in the kitchen")
But they'll also wax lyrical about
βοΈ their splits (upper vs lower, arms/shoulders/core vs back/chest vs legs),
βοΈ how much they hate cardio (which I find inexplicable as secretly they love it, they just say they hate it because everyone else says it),
βοΈ their cheat meals.
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ββ What is the difference between Model-Centric AI vs Data-Centric AI ββ
By analogy:
ππ» #ModelCentricAI β‘οΈ The workout matters ππ»ββοΈ
ππ» #DataCentricAI: β‘οΈ The diet matters π₯
So the difference between Model-Centric AI and Data-Centric AI is like optimizing on the workout (types of lifts, cardio, reps & intensity, etc) versus optimizing the diet (caloric intake, macros, timing, etc).
#modelcentricai #datacentricai #MLops #dataengineering #productionml #mlsystems